Spectrum clustering is a powerful strategy to minimize redundant mass spectral data by grouping highly similar mass spectra corresponding to repeatedly measured analytes. Based on spectrum similarity, near-identical spectra are grouped in clusters, after which each cluster can be represented by its so-called consensus spectrum for downstream processing. Although several algorithms for spectrum clustering have been adequately benchmarked and tested, the influence of the consensus spectrum generation step is rarely evaluated. Here, we present an implementation and benchmark of common consensus spectrum algorithms, including spectrum averaging, spectrum binning, the most similar spectrum, and the best-identified spectrum. We have analyzed dive...
Large-scale proteomics projects often generate massive and highly redundant tandem mass spectra. Spe...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
In contemporary peptide-centric or non-gel proteome studies, vast amounts of peptide fragmentation d...
Spectrum clustering is a powerful strategy to minimize redundant mass spectra by grouping them based...
Spectrum clustering is a powerful strategy to minimize redundant mass spectra by grouping them based...
International audienceIn proteomics, the identification of peptides from mass spectral data can be m...
High-throughput proteomics experiments typically generate large amounts of peptide fragmentation mas...
In this article, current and future applications of spectral clustering are discussed in the context...
Mass spectrometry (MS) is the main technology used in proteomics approaches. However, on average 75%...
Label-free quantification has become a common-practice in many mass spectrometry-based proteomics ex...
As in many other fields, biology is faced with enormous amounts ofdata that contains valuable inform...
Shotgun proteomics experiments require the collection of thousands of tandem mass spectra; these set...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
Large-scale proteomics projects often generate massive and highly redundant tandem mass spectra. Spe...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
In contemporary peptide-centric or non-gel proteome studies, vast amounts of peptide fragmentation d...
Spectrum clustering is a powerful strategy to minimize redundant mass spectra by grouping them based...
Spectrum clustering is a powerful strategy to minimize redundant mass spectra by grouping them based...
International audienceIn proteomics, the identification of peptides from mass spectral data can be m...
High-throughput proteomics experiments typically generate large amounts of peptide fragmentation mas...
In this article, current and future applications of spectral clustering are discussed in the context...
Mass spectrometry (MS) is the main technology used in proteomics approaches. However, on average 75%...
Label-free quantification has become a common-practice in many mass spectrometry-based proteomics ex...
As in many other fields, biology is faced with enormous amounts ofdata that contains valuable inform...
Shotgun proteomics experiments require the collection of thousands of tandem mass spectra; these set...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
Large-scale proteomics projects often generate massive and highly redundant tandem mass spectra. Spe...
The 2017 Dagstuhl Seminar on Computational Proteomics provided an opportunity for a broad discussion...
In contemporary peptide-centric or non-gel proteome studies, vast amounts of peptide fragmentation d...